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Improving Soil Water Determination in Spatially Variable Field using Fiber Optic Technology and Bayesian Decision Theory.

机译:利用光纤技术和贝叶斯决策理论改善空间可变领域中土壤水分的测定。

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摘要

Achieving and maintaining sustainability in irrigated agriculture production in the era of rapidly increasing stress on our natural resources require, among other essential actions, optimum control and management of the applied water. Thus, a significant upgrade of the currently available soil water monitoring technologies is needed. The primary goal of this work was to reduce the uncertainties of spatially variable soil water in the field. Two approaches are suggested: 1) The Bayesian decision model that implicitly accounts for spatial variability at minimal cost based on limited field data, and 2) The Actively Heated Fiber Optic (AHFO) method that explicitly accounts for spatial variability with high sampling density at relatively low cost per measurement point.;The Bayesian decision model uses an algorithm to integrate information embodied in independent estimates of soil water depletion to derive a posterior estimation of soil water status that has the potential to reduce the risk of costly errors in irrigation scheduling decisions. The sources of information are obtained from an ET based water balance model, soil water measurements, and expert opinion. The algorithm was tested in a numerical example based on a field experiment where soil water depletion measurements were made at 43 sites in an agricultural field under center pivot irrigation. The results showed that the estimates of the average soil water depletion in the field obtained from the posterior distributions of soil water depletion proved to outperform simple averaging of n soil water depletion measurements, up to n = 35 measurements. For n 3, the model also provided a 39% average reduction in risk of error derived from non-representative measurements.;The AHFO method observes the heating and cooling of a buried fiber optic (FO) cable through the course of a pulse application of energy as monitored by a distributed temperature sensing (DTS) system to reveal soil water content simultaneously at sub-meter scale along the FO cable that can potentially exceeds kilometers in length. A new and simple interpretation of heat data that takes advantage of the characteristics of FO temperature measurements is presented. The results demonstrate the feasibility of AHFO method application to obtain 0.05 m3m-3 error distributed measurements of soil water content under laboratory controlled conditions. The AHFO method was then tested under field conditions using 750 m of FO cables buried at 30, 60, and 90 cm depths in agricultural field. The calibration curve relating soil water content to the thermal response of the soil to a heat pulse was developed in the lab. It was successively applied to the 30 and 60 cm depths cables, while the 90 cm depth cable illustrated the challenges of soil heterogeneity for this technique. The method was used to map with high spatial (1m) and temporal (1hr) resolution the spatial variability of soil water content and fluxes induced by the non-uniformity of water application at the surface.
机译:在对自然资源的压力迅速增加的时代,要实现和维持灌溉农业生产的可持续性,除其他基本措施外,还需要对所用水进行最佳控制和管理。因此,需要对当前可用的土壤水监测技术进行重大升级。这项工作的主要目标是减少田间空间可变土壤水的不确定性。提出了两种方法:1)贝叶斯决策模型,该模型基于有限的现场数据以最小的成本隐式地考虑了空间变异性; 2)主动加热的光纤(AHFO)方法以相对较高的采样密度明确地考虑了空间变异性贝叶斯决策模型使用一种算法来整合体现在土壤耗水量独立估计中的信息,以得出土壤水状态的后验估计,从而有可能减少灌溉计划决策中代价高昂的错误风险。信息来源可从基于ET的水平衡模型,土壤水测量值和专家意见中获得。在一个基于田间试验的数值示例中对该算法进行了测试,在该试验中,在中心枢纽灌溉条件下在农田的43个地点进行了土壤水分消耗的测量。结果表明,从土壤耗水量的后验分布得出的田间平均土壤耗水量估计值优于n个土壤耗水量测量值的简单平均,最高可达n = 35。对于n <3,该模型还可以将非代表性测量得出的错误风险平均降低39%.; AHFO方法通过脉冲施加过程观察埋入式光纤(FO)电缆的加热和冷却由分布式温度感测(DTS)系统监控的能量分布,同时沿着FO电缆以亚米级同时显示土壤水分,这可能会超过千米的长度。提出了一种利用FO温度测量特性对热量数据进行新的简单解释的方法。结果表明,在实验室控制的条件下,AHFO方法可用于获得<0.05 m3m-3的土壤水分误差分布测量值。然后在田间条件下,使用750 m的FO电缆埋在30、60和90 cm的农田中,对AHFO方法进行了测试。在实验室中建立了将土壤水分与土壤对热脉冲的热响应相关的校准曲线。它先后应用于30厘米和60厘米深度的电缆,而90厘米深度的电缆说明了该技术对土壤异质性的挑战。该方法用于绘制高空间(1m)和时间(1hr)分辨率的图,这些图是由表层水的不均匀性引起的土壤水分和通量的空间变异性。

著录项

  • 作者

    Sayde, Chadi.;

  • 作者单位

    Oregon State University.;

  • 授予单位 Oregon State University.;
  • 学科 Hydrology.;Water Resource Management.;Agriculture General.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 193 p.
  • 总页数 193
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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